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On the identifiability of measurement error in the bifurcating autoregressive model
Affiliation:1. TU Dortmund University, Otto-Hahn-Straße 4, Dortmund 44227, Germany;2. Instituto de Ciencia Molecular (ICMol), Universidad de Valencia, c/Catedrático José Beltrán. 2, Paterna 46980, Spain
Abstract:Huggins and Staudte (1994) considered a mixed linear model for the analysis of cell lineage data and in models for the covariance structure which involved measurement error, it was not immediately clear that the parameters involved were identifiable. Whilst a numerical examination of the Hessian matrix at the estimated parameter values gave some reassurance, this was not theoretically satisfying. Here a matrix formulation of the robust estimating functions of Huggins (1993a, b) as applied in Huggins and Staudte (1994), which include the maximum likelihood estimating functions under the assumption of multivariate normality as a special case, is given along with a direct proof linking identifiability expressed in terms of the estimating functions with the information matrix or its analogue in more general settings. The resulting conditions on the estimating functions may then be checked globally using computer algebra, suggesting a method for establishing identifiability in mixed linear models in general.
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